Mark L. Psiaki, - PowerPoint PPT Presentation

1 / 21
About This Presentation
Title:

Mark L. Psiaki,

Description:

Sibley School of Mechanical & Aerospace Engineering. Cornell University ... Systems using carrier-phase measurements of TDMA signals ... – PowerPoint PPT presentation

Number of Views:23
Avg rating:3.0/5.0
Slides: 22
Provided by: markp102
Category:

less

Transcript and Presenter's Notes

Title: Mark L. Psiaki,


1
Kalman Filtering Smoothing to Estimate
Real-Valued States Integer Constants
  • Mark L. Psiaki,
  • Sibley School of Mechanical Aerospace
    EngineeringCornell University

2
Goal
  • Improve estimation algorithms for systems that
    have integer measurement ambiguities
  • CDGPS with double-differenced integer ambiguities
  • Systems using carrier-phase measurements of TDMA
    signals

Strategies
  • Use SRIF/LAMBDA-type formulation to deal with
    mixed real/integer problem
  • Develop optimal suboptimal Kalman filter
    smoother algorithms
  • Optimal keep all ambiguities treat as integers
  • Suboptimal retain integers in a finite time
    window

3
Outline of Talk
  • Related research
  • Problem definition
  • Mixed real/integer Kalman filter
  • Optimal, retains all past integers
  • Suboptimal, retains finite window of past
    integers
  • Mixed real/integer fixed-interval smoother
  • Optimal, retains all integers of fixed interval
  • Suboptimal, retains finite window of past
    future integers relative to each time point
  • Truth-model simulation results
  • Conclusions

4
Related Research
  • Batch estimation w/integer ambiguities
  • The LAMBDA method, Teunissen (1995) follow-ons
  • Other methods, e.g., Chen Lachapelle (1995)
  • SRIF LAMBDA-like method, Psiaki Mohiuddin
    (2007)
  • Kalman filtering w/integer ambiguities
  • Standard Covariance EKF, Kroes et al. (2005)
  • SRIF-based EKF, Mohiuddin Psiaki (2008)
  • Sub-optimal dropping of each integer ambiguity
    immediately after its last occurrence in a
    measurement
  • Smoothing w/integer ambiguities
  • Nothing

5
Dynamics Model
Real-state dynamics
Growth of integer state with sample number
Partitioning of integer states by affected
measurement sample times (past, past present,
past, present future)
Or dynamic re-partitioning
6
Measurement Model
using integer vector partitions
using full integer vector
7
Example Sensitivities of Different Measurement
Types to Different Integers
8
Kalman Filtering/Smoothing Problem
  • find x0, , xk1, w0, , wk, nk1 dn0
    dnk
  • to minimize
  • subject to xj1 Fjxj Gjwj hj for j 0,
    1, 2, ..., k nk1 is an integer-valued vector

9
Optimal SRIF Kalman Filter
  • Stage-k a posterior info
  • Combined information eqs. w/dynamics substitution
    for xk
  • New stage-(k1) a posterior info after QR
    factorization

10
Measurement Update via Integer Linear
Least-Squares Solution
  • Solve integer linear least-squares problem to
    determine integer a posteriori estimate
  • Back-substitute to compute real-valued states

11
Suboptimal KF Retention of Exact Integers within
a Window of Samples
12
Suboptimal SRIF Kalman Filter
  • Stage-k a posterior info
  • Combined information eqs. w/dynamics substitution
    for xk mk
  • New stage-(k1) a posterior info after QR
    factorization

13
Optimal RTS Smoother in SRIF Form
  • Terminal sample K initialization
  • 1-sample backwards recursion starts w/filtered wk
    smoothed xk1 info. eqs. uses dynamics to get
  • QR factorize to isolate smoothed xk info. eq.

14
Suboptimal RTS Smoother Retention of Exact
Integers within a Window of Samples
15
Suboptimal RTS Smoother (1 of 2)
  • Terminal sample K initialization
  • 1-sample backwards recursion starts w/filtered wk
    Dnk-i smoothed xk1 lk1 info. eqs. uses
    dynamics integer permutation/partitions to get

16
Suboptimal RTS Smoother (2 of 2)
  • New stage-k smoothed xk lk square-root
    information equations after QR factorization
  • is the integer vector that minimizes
  • The real part of the state is determined by back
    substitution

17
Example 1-Dimensional CDGPS-Type Problem with
3rd-Order Dynamics
  • Dynamics
  • Measurements

18
x1 Errors for Three Kalman Filters
19
x1 Errors for Three Smoothers
20
Integer-Part Computational Cost of Optimal
Suboptimal Algorithms
21
Summary Conclusions
  • Developed optimal suboptimal Kalman filters
    fixed-interval smoothers for mixed real/integer
    estimation problems
  • Constant integer ambiguities enter only
    measurements
  • Optimal algorithms consider all integers in data
    batch
  • Suboptimal algorithms drop integers that affect
    measurements only in remote past or future
  • Tested using data from truth-model simulation
  • Optimal suboptimal filter achieve modest
    accuracy gains vs. all-reals approximate filter
  • Filter accuracy gains may be greater for
    different problem
  • Optimal suboptimal smoother significantly more
    accurate than all-reals smoother
  • Suboptimal smoother nearly as accurate as optimal
    smoother
  • Suboptimal algorithms reduce required processing
    by at least 65 through reductions in dimensions
    of measurement update integer linear
    least-squares problems
Write a Comment
User Comments (0)
About PowerShow.com